Sampling from a diffusion model involves an iterative process where a denoiser estimates the tangent direction to a path through input space. Neural networks can be trained to directly predict the integral that transforms samples from a simple noise distribution into samples from a target distribution.
sander.ai
83 min
5/6/2026
Biological computing applies mathematical concepts and probabilities used in AI to human neurons. This intersection raises concerns about the ethical implications and potential dystopian outcomes of merging biological systems with computational processes.
kuber.studio
2 min
5/5/2026
A scientific theory of deep learning is emerging that characterizes key properties and statistics related to the training process, hidden representations, final weights, and performance of neural networks. The research consolidates various ongoing studies in deep learning theory.
arxiv.org
2 min
4/24/2026
An NSFW filter for Marginalia Search is being developed in response to requests from API consumers. The filter will utilize a single hidden layer neural network, having explored various other methods prior to this decision.
marginalia.nu
13 min
3/30/2026
Tinygrad is a neural network framework designed for simplicity and speed, breaking down complex networks into three operation types: ElementwiseOps, ReduceOps, and MovementOps. ElementwiseOps include operations like SQRT and ADD, ReduceOps perform functions like SUM and MAX on a single tensor, and MovementOps manage data movement without copying, utilizing ShapeTrack.
tinygrad.org
5 min
3/21/2026
Noids, or neural boids, utilize a small neural network to generate steering forces based on visual input from each agent, comprising 1,922 learned parameters. This system mimics the behavior of real birds in a murmuration, where no leader or predetermined choreography directs the movement of the flock.
campedersen.com
10 min
3/8/2026
nCPU is a CPU architecture that operates entirely on GPU, utilizing tensors for registers, memory, flags, and the program counter. All arithmetic operations, including addition, multiplication, bitwise operations, and shifts, are performed through trained neural networks, with specific methods like Kogge-Stone carry-lookahead for addition and learned byte-pair lookup tables for multiplication.
github.com
8 min
3/4/2026
A thermodynamic computer can generate images from noise while consuming significantly less energy than traditional generative AI models. This technology mimics the functionality of AI neural networks.
livescience.com
8 min
2/23/2026
Hypernetworks extend traditional neural networks to effectively handle hierarchical data, acknowledging that real-world data often consists of multiple distinct datasets rather than a single flat mapping. This method allows for the modeling of variations in observations, such as those seen in clinical trials across different hospitals, where hidden parameters influence outcomes.
blog.sturdystatistics.com
21 min
2/5/2026
Sampling from a diffusion model involves an iterative process where a denoiser estimates the tangent direction to a path through input space. Neural networks can be trained to directly predict the integral that transforms samples from a simple noise distribution into samples from a target distribution.
sander.ai
83 min
5/6/2026
A scientific theory of deep learning is emerging that characterizes key properties and statistics related to the training process, hidden representations, final weights, and performance of neural networks. The research consolidates various ongoing studies in deep learning theory.
arxiv.org
2 min
4/24/2026
Tinygrad is a neural network framework designed for simplicity and speed, breaking down complex networks into three operation types: ElementwiseOps, ReduceOps, and MovementOps. ElementwiseOps include operations like SQRT and ADD, ReduceOps perform functions like SUM and MAX on a single tensor, and MovementOps manage data movement without copying, utilizing ShapeTrack.
tinygrad.org
5 min
3/21/2026
nCPU is a CPU architecture that operates entirely on GPU, utilizing tensors for registers, memory, flags, and the program counter. All arithmetic operations, including addition, multiplication, bitwise operations, and shifts, are performed through trained neural networks, with specific methods like Kogge-Stone carry-lookahead for addition and learned byte-pair lookup tables for multiplication.
github.com
8 min
3/4/2026
Hypernetworks extend traditional neural networks to effectively handle hierarchical data, acknowledging that real-world data often consists of multiple distinct datasets rather than a single flat mapping. This method allows for the modeling of variations in observations, such as those seen in clinical trials across different hospitals, where hidden parameters influence outcomes.
blog.sturdystatistics.com
21 min
2/5/2026
Biological computing applies mathematical concepts and probabilities used in AI to human neurons. This intersection raises concerns about the ethical implications and potential dystopian outcomes of merging biological systems with computational processes.
kuber.studio
2 min
5/5/2026
An NSFW filter for Marginalia Search is being developed in response to requests from API consumers. The filter will utilize a single hidden layer neural network, having explored various other methods prior to this decision.
marginalia.nu
13 min
3/30/2026
Noids, or neural boids, utilize a small neural network to generate steering forces based on visual input from each agent, comprising 1,922 learned parameters. This system mimics the behavior of real birds in a murmuration, where no leader or predetermined choreography directs the movement of the flock.
campedersen.com
10 min
3/8/2026
A thermodynamic computer can generate images from noise while consuming significantly less energy than traditional generative AI models. This technology mimics the functionality of AI neural networks.
livescience.com
8 min
2/23/2026
Sampling from a diffusion model involves an iterative process where a denoiser estimates the tangent direction to a path through input space. Neural networks can be trained to directly predict the integral that transforms samples from a simple noise distribution into samples from a target distribution.
sander.ai
83 min
5/6/2026
An NSFW filter for Marginalia Search is being developed in response to requests from API consumers. The filter will utilize a single hidden layer neural network, having explored various other methods prior to this decision.
marginalia.nu
13 min
3/30/2026
nCPU is a CPU architecture that operates entirely on GPU, utilizing tensors for registers, memory, flags, and the program counter. All arithmetic operations, including addition, multiplication, bitwise operations, and shifts, are performed through trained neural networks, with specific methods like Kogge-Stone carry-lookahead for addition and learned byte-pair lookup tables for multiplication.
github.com
8 min
3/4/2026
Biological computing applies mathematical concepts and probabilities used in AI to human neurons. This intersection raises concerns about the ethical implications and potential dystopian outcomes of merging biological systems with computational processes.
kuber.studio
2 min
5/5/2026
Tinygrad is a neural network framework designed for simplicity and speed, breaking down complex networks into three operation types: ElementwiseOps, ReduceOps, and MovementOps. ElementwiseOps include operations like SQRT and ADD, ReduceOps perform functions like SUM and MAX on a single tensor, and MovementOps manage data movement without copying, utilizing ShapeTrack.
tinygrad.org
5 min
3/21/2026
A thermodynamic computer can generate images from noise while consuming significantly less energy than traditional generative AI models. This technology mimics the functionality of AI neural networks.
livescience.com
8 min
2/23/2026
A scientific theory of deep learning is emerging that characterizes key properties and statistics related to the training process, hidden representations, final weights, and performance of neural networks. The research consolidates various ongoing studies in deep learning theory.
arxiv.org
2 min
4/24/2026
Noids, or neural boids, utilize a small neural network to generate steering forces based on visual input from each agent, comprising 1,922 learned parameters. This system mimics the behavior of real birds in a murmuration, where no leader or predetermined choreography directs the movement of the flock.
campedersen.com
10 min
3/8/2026
Hypernetworks extend traditional neural networks to effectively handle hierarchical data, acknowledging that real-world data often consists of multiple distinct datasets rather than a single flat mapping. This method allows for the modeling of variations in observations, such as those seen in clinical trials across different hospitals, where hidden parameters influence outcomes.
blog.sturdystatistics.com
21 min
2/5/2026
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